利用机器学习方法预测氧化铝复合材料的机械特性

Ashwini Kumar, Arunkumar Devalapura Thimmappa, Ritesh Kumar, Manali Gupta
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引用次数: 0

摘要

获得合金的必要特性是铝部件生产中的关键问题,需要花费大量时间和精力进行调查和实验。本研究介绍了利用贝叶斯微调自适应门控递归单元(B-AGRU)预测铝合金机械特性的机器学习技术。训练和测试在数据集上进行,数据集经过了全面的准备过程,包括清理和 Z 值归一化。主成分分析(PCA)用于特征提取,以提高算法效率。用 Python、硬度和屈服强度实现的 GRU 方法可得出更准确的结论。与标准方法相比,该过程节省了大量时间和精力,RMSE-20%、MAE-10% 和 R-squared-97% 等指标都证明了这一点。这项研究揭示了基于 B-AGRU 的机器学习是提高铝合金机械性能预测效率和可持续性的可行策略,为在工业领域的广泛应用铺平了道路。
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PREDICTING ALUMINA COMPOSITES’ MECHANICAL CHARACTERISTICS USING A MACHINE LEARNING APPROACH
Obtaining the requisite properties in alloys is crucial problem in the production of aluminium components, requiring great deal of time and effort for investigation and experimentation. In this study, machine-learning technique utilizing Bayesian-fine tuned Adaptive Gated Recurrent Unit (B-AGRU) to forecast the mechanical characteristics of aluminium alloys is presented. Training and testing are conducted on dataset, which has undergone comprehensive preparation process that includes cleaning and Z-score normalization. Principal Component Analysis (PCA) is used for feature extraction to increase algorithmic efficiency. The GRU approach, which is implemented in Python, hardness and yield strength, leading in more accurate findings. When compared to standard methodologies, process saves significant time and energy, as evidenced by metrics such as RMSE-20%, MAE-10% and R-squared-97%. This study reveals B-AGRU-based machine learning as a feasible strategy for enhancing efficiency and sustainability in forecasting mechanical properties of aluminium alloys, paving the way for wider application in industrial sector.
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CiteScore
1.00
自引率
0.00%
发文量
55
审稿时长
12 weeks
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